一种用于非小细胞肺癌PD-L1表达自动评分的新型深度学习框架。

0 MEDICINE, RESEARCH & EXPERIMENTAL
Saidul Kabir, Muhammad E H Chowdhury, Rusab Sarmun, Semir Vranić, Rafif Mahmood Al Saady, Inga Rose, Zoran Gatalica
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引用次数: 0

摘要

抗pd -1/PD-L1治疗的关键预测指标是程序性死亡配体1 (PD-L1)的表达,通过免疫组织化学(IHC)评估。本文探索了一种新的自动化框架,利用深度学习来准确评估非小细胞肺癌(NSCLC)全幻灯片图像(WSIs)中的PD-L1表达,旨在提高肿瘤比例评分(TPS)评估的准确性和一致性,这是确定患者是否适合免疫治疗的关键。自动化TPS评估可以提高准确性和一致性,同时减少病理学家的工作量。提出的自动化框架包括三个阶段:识别肿瘤斑块,分割肿瘤区域,检测这些区域内的细胞核,然后根据阳性染色与总活肿瘤细胞的比例估计TPS。本研究利用参考医学(Phoenix, Arizona)包含66个NSCLC组织样本的数据集,采用混合人机方法对广泛的wsi进行注释。生成大小为1000x1000像素的补丁来训练分类模型,如EfficientNet、Inception和Vision Transformer模型。此外,对不同UNet和DeepLabV3架构的分割性能进行了评估,并使用预训练的StarDist模型进行核检测,取代了传统的分水岭技术。PD-L1的表达根据TPS分为3个水平:阴性表达(TPS < 1%)、低表达(TPS 1-49%)和高表达(TPS≥50%)。基于Vision transformer的模型在分类方面表现优异,f1得分为97.54%,而改进的DeepLabV3+模型在分割方面表现优异,Dice Similarity Coefficient为83.47%。框架预测的TPS与病理学家的TPS密切相关,为0.9635,框架三级分类f1评分为93.89%。提出的用于自动评估非小细胞肺癌中PD-L1表达TPS的深度学习框架显示出良好的性能。该框架提出了一种潜在的工具,可以更有效、更经济地产生具有临床意义的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel deep learning framework for automatic scoring of PD-L1 expression in non-small cell lung cancer.

A critical predictive marker for anti-PD-1/PD-L1 therapy is programmed death-ligand 1 (PD-L1) expression, assessed by immunohistochemistry (IHC). This paper explores a novel automated framework using deep learning to accurately evaluate PD-L1 expression from whole slide images (WSIs) of non-small cell lung cancer (NSCLC), aiming to improve the precision and consistency of Tumor Proportion Score (TPS) evaluation, which is essential for determining patient eligibility for immunotherapy. Automating TPS evaluation can enhance accuracy and consistency while reducing pathologists' workload. The proposed automated framework encompasses three stages: identifying tumor patches, segmenting tumor areas, and detecting cell nuclei within these areas, followed by estimating the TPS based on the ratio of positively stained to total viable tumor cells. This study utilized a Reference Medicine (Phoenix, Arizona) dataset containing 66 NSCLC tissue samples, adopting a hybrid human-machine approach for annotating extensive WSIs. Patches of size 1000x1000 pixels were generated to train classification models such as EfficientNet, Inception, and Vision Transformer models. Additionally, segmentation performance was evaluated across various UNet and DeepLabV3 architectures, and the pre-trained StarDist model was employed for nuclei detection, replacing traditional watershed techniques. PD-L1 expression was categorized into three levels based on TPS: negative expression (TPS < 1%), low expression (TPS 1-49%), and high expression (TPS ≥ 50%). The Vision Transformer-based model excelled in classification, achieving an F1-score of 97.54%, while the modified DeepLabV3+ model led in segmentation, attaining a Dice Similarity Coefficient of 83.47%. The TPS predicted by the framework closely correlated with the pathologist's TPS at 0.9635, and the framework's three-level classification F1-score was 93.89%. The proposed deep learning framework for automatically evaluating the TPS of PD-L1 expression in NSCLC demonstrated promising performance. This framework presents a potential tool that could produce clinically significant results more efficiently and cost-effectively.

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